The original publication is available at www.springerlink.com ; ISBN 978-3-540-46484-6 ; ISSN 0302-9743 (Print) 1611-3349 (Online)International audienceOver the last decade, numerous papers have investigated the use of GP for creating financial trading strategies. Typically in the literature results are inconclusive but the investigators always suggest the possibility of further improvements, leaving the conclusion regarding the effectiveness of GP undecided. In this paper, we discuss a series of pretests, based on several variants of random search, aiming at giving more clearcut answers on whether a GP scheme, or any other machine-learning technique, can be effective with the training data at hand. The analysis is illustrated with GP-evolv...
The efficient market hypothesis (EMH) suggests that a stock market behaves like a random walk; if so...
One group of information systems that have attracted a lot of attention during the past decade are f...
Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) beca...
The original publication is available at www.springerlink.comOver the last decade, numerous papers h...
International audienceGenetic Programming (GP) is an appealing machine-learning technique for tackli...
Tutorial given at CIEF'2006 - available at url http://www.loria.fr/~nnavetInternational audienceGene...
This paper investigates the performance of trading strategies identified through Computational Intel...
This paper presents a Robust Genetic Programming approach for discovering profitable trading rules w...
Evolutionary Computation is often used in the domain of automated discovery of trading rules. Within...
Genetic programming (GP) is increasingly popular as a research tool for applications in finance and...
Genetic programming is employed to develop trading rules, which are applied to test the efficient ma...
The aim of this paper is to investigate the use of genetic algorithms in investment strategy develop...
Abstract — Genetic programming (GP) is increasingly investigated in finance and economics. One area ...
AbstractFinding the best trading rules is a well-known problem in the field of technical analysis of...
Machine learning (ML) techniques have shown to be useful in the field of financial forecasting. In p...
The efficient market hypothesis (EMH) suggests that a stock market behaves like a random walk; if so...
One group of information systems that have attracted a lot of attention during the past decade are f...
Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) beca...
The original publication is available at www.springerlink.comOver the last decade, numerous papers h...
International audienceGenetic Programming (GP) is an appealing machine-learning technique for tackli...
Tutorial given at CIEF'2006 - available at url http://www.loria.fr/~nnavetInternational audienceGene...
This paper investigates the performance of trading strategies identified through Computational Intel...
This paper presents a Robust Genetic Programming approach for discovering profitable trading rules w...
Evolutionary Computation is often used in the domain of automated discovery of trading rules. Within...
Genetic programming (GP) is increasingly popular as a research tool for applications in finance and...
Genetic programming is employed to develop trading rules, which are applied to test the efficient ma...
The aim of this paper is to investigate the use of genetic algorithms in investment strategy develop...
Abstract — Genetic programming (GP) is increasingly investigated in finance and economics. One area ...
AbstractFinding the best trading rules is a well-known problem in the field of technical analysis of...
Machine learning (ML) techniques have shown to be useful in the field of financial forecasting. In p...
The efficient market hypothesis (EMH) suggests that a stock market behaves like a random walk; if so...
One group of information systems that have attracted a lot of attention during the past decade are f...
Stock selection for hedge fund portfolios is a challenging problem for Genetic Programming (GP) beca...